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Face recognition using Gabor-based complete Kernel Fisher Discriminant analysis with fractional power polynomial models

机译:使用基于分数倍多项式模型的基于Gabor的完整Kernel Fisher判别分析进行人脸识别

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This paper presents a novel face recognition method by integrating the Gabor wavelet representation of face images and the enhanced powerful discriminator, complete Kernel Fisher Discriminant (CKFD) with fractional power polynomial (FPP) models. The novelty of this paper comes from (1) Gabor wavelet, is employed to extract desirable facial features characterized by spatial frequency, spatial locality and orientation selectivity to cope with the variations in illumination and facial expressions, which improves the recognition performance; (2) a recently proposed powerful discriminator, namely CKFD, which enhances its discriminating ability using two kinds of discriminant information (i.e., regular and irregular information), is employed to classify the Gabor features; (3) the FPP models, are employed to CKFD analysis to enhance the discriminating ability. Comparing with existing principal component analysis, linear discriminant analysis, kernel principal component analysis, KFD and CKFD methods, the proposed method gives the superior results with the ORL, Yale and UMIST face databases.
机译:本文通过结合人脸图像的Gabor小波表示和增强的强大判别器,具有分数幂多项式(FPP)模型的完整Kernel Fisher判别式(CKFD),提出了一种新颖的人脸识别方法。本文的新颖性来自(1)Gabor小波,用于提取具有空间频率,空间局部性和方向选择性的特征性面部特征,以适应光照和面部表情的变化,从而提高识别性能; (2)最近提出了一种强大的鉴别器,即CKFD,它利用两种鉴别信息(即规则和不规则信息)增强了鉴别能力,从而对Gabor特征进行分类; (3)将FPP模型用于CKFD分析,以增强判别能力。与现有的主成分分析,线性判别分析,核主成分分析,KFD和CKFD方法相比,该方法在ORL,Yale和UMIST人脸数据库中均具有优异的结果。

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